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Classifying Patent Images

Contributing authors of JOANNEUM RESEARCH:
Authors
Moerzinger, Roland; Horti, Andras; Thallinger, Georg; Bhatti, Naeem; Hanbury, Allan
Abstract:
This report presents the work carried out for the image classification task in the course of the CLEF-IP 2011 competition. Based on the visual content, patent images are automatically classified into several drawing types, such as abstract drawings, tables, flow chart and graphs. For that purpose, a series of SVM classifiers, multi-modal fusion schemes and a variety of content-based low-level features for black and white images were used. The overall reported performance was promising. Our best runs achieved a true positive rate of over 66% and the reported average area under curve is over 0.9.
Title:
Classifying Patent Images
Publikationsdatum
2011-09

Publikationsreihe

Adresse
Amsterdam, Niederlande
Proceedings
Conference on Multilingual and Multimodal Information Access Evaluation, CLEF (Notebook Papers/Labs/Workshop)
More files and links
Jahr/Monat:
2011

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